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Case-Based Reasoning for Explaining Probabilistic Machine Learning


Affiliations
1 School of Innovation, Design, and Engineering, Malardalen University, Vasteras, Sweden
2 SICS Swedish ICT, Isafjordsgatan 22, Box 1263, SE-164 29 Kista, Sweden
 

This paper describes a generic framework for explaining the prediction of probabilistic machine learning algorithms using cases. The framework consists of two components: a similarity metric between cases that is defined relative to a probability model and an novel case-based approach to justifying the probabilistic prediction by estimating the prediction error using case-based reasoning. As basis for deriving similarity metrics, we define similarity in terms of the principle of interchangeability that two cases are considered similar or identical if two probability distributions, derived from excluding either one or the other case in the case base, are identical. Lastly, we show the applicability of the proposed approach by deriving a metric for linear regression, and apply the proposed approach for explaining predictions of the energy performance of households.

Keywords

Case-Based Reasoning, Case-Based Explanation, Artificial Intelligence, Decision Support, Machine Learning.
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  • Case-Based Reasoning for Explaining Probabilistic Machine Learning

Abstract Views: 190  |  PDF Views: 132

Authors

Tomas Olsson
School of Innovation, Design, and Engineering, Malardalen University, Vasteras, Sweden
Daniel Gillblad
SICS Swedish ICT, Isafjordsgatan 22, Box 1263, SE-164 29 Kista, Sweden
Peter Funk
School of Innovation, Design, and Engineering, Malardalen University, Vasteras, Sweden
Ning Xiong
School of Innovation, Design, and Engineering, Malardalen University, Vasteras, Sweden

Abstract


This paper describes a generic framework for explaining the prediction of probabilistic machine learning algorithms using cases. The framework consists of two components: a similarity metric between cases that is defined relative to a probability model and an novel case-based approach to justifying the probabilistic prediction by estimating the prediction error using case-based reasoning. As basis for deriving similarity metrics, we define similarity in terms of the principle of interchangeability that two cases are considered similar or identical if two probability distributions, derived from excluding either one or the other case in the case base, are identical. Lastly, we show the applicability of the proposed approach by deriving a metric for linear regression, and apply the proposed approach for explaining predictions of the energy performance of households.

Keywords


Case-Based Reasoning, Case-Based Explanation, Artificial Intelligence, Decision Support, Machine Learning.